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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Prototype optimization for nearest-neighbor classification
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Prototype optimization for nearest-neighbor classification

机译:最近邻分类的原型优化

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摘要

A novel neuralnet-based method of constructing optimized prototypes for nearest-neighbor classifiers is proposed. Based on an effective classiacation oriented error function containing class classification and class separation components, the corresponding prototype and feature weight update rules are derived. The proposed method consists of several distinguished properties. First, not only prototypes but also feature weights are constructed during the optimization process. Second, several instead of one prototype not belonging to the genuine class of input sample x are updated when x is classified incorrectly. Third, it intrinsically distinguishes different learning contribution from training samples, which enables a large amount of learning from constructive samples, and limited learning from outliers. Experiments have shown the superiority of this method compared with LVQ2 and other previous works. (C) 2002 Published by Elsevier Science Ltd on behalf of Pattern Recognition Society. [References: 10]
机译:提出了一种新的基于神经网络的构造最近邻分类器优化原型的方法。基于包含类分类和类分离成分的有效的面向分类的误差函数,得出相应的原型和特征权重更新规则。所提出的方法包括几个杰出的性质。首先,在优化过程中不仅要构造原型,还要构造特征权重。第二,当x分类不正确时,将更新几个而不属于一个不属于输入样本x真正类别的原型。第三,它从本质上区分了来自训练样本的不同学习贡献,这使得能够从构造样本中进行大量学习,而从异常值中进行有限的学习。实验表明,与LVQ2和其他先前的作品相比,该方法的优越性。 (C)2002由Elsevier Science Ltd代表模式识别协会出版。 [参考:10]

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